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Training simultaneous recurrent neural network with resilient propagation for static optimization

机译:通过弹性传播训练同时递归神经网络以进行静态优化

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This paper proposes a non-recurrent training algorithm, resilient propagation, for the Simultaneous Recurrent Neural network operating in relaxation-mode for computing high quality solutions of static optimization problems. Implementation details related to adaptation of the recurrent neural network weights through the non-recurrent training algorithm, resilient backpropagation, are formulated through an algebraic approach. Performance of the proposed neuro-optimizer on a well-known static combinatorial optimization problem, the Traveling Salesman Problem, is evaluated on the basis of computational complexity measures and, subsequently, compared to performance of the Simultaneous Recurrent Neural network trained with the standard backpropagation, and recurrent backpropagation for the same static optimization problem. Simulation results indicate that the Simultaneous Recurrent Neural network trained with the resilient backpropagation algorithm is able to locate superior quality solutions through comparable amount of computational effort for the Traveling Salesman Problem.
机译:本文提出了一种以松弛模式运行的同时递归神经网络的非递归训练算法,即弹性传播,以计算静态优化问题的高质量解。通过代数方法,制定了与通过非递归训练算法适应性递归神经网络权重适应递归神经网络权重有关的实现细节。拟议的神经优化器在著名的静态组合优化问题Traveling Salesman问题上的性能是根据计算复杂性指标进行评估的,随后与通过标准反向传播训练的同时递归神经网络的性能进行比较,以及针对相同静态优化问题的递归反向传播。仿真结果表明,通过弹性反向传播算法训练的同时递归神经网络能够通过可比的旅行商问题的计算量来找到优质的解决方案。

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